Top 100 in Microbiology from 2023 | Scientific Reports

Top 100 in Microbiology from 2023 | Scientific Reports
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The Scientific Reports team is pleased to announce the most read* articles from 2023 in Microbiology. Featuring authors from around the world, these papers highlight valuable research from an international community.

We invite you to take a look at our Top 100 in Microbiology Collection. SARS-CoV2 research continue to attract a lot of attention with the most read articles in this space in 2023 on variants of SARS-CoV-2, vaccines and herd immunity, real-time monitoring and advanced diagnostics for COVID-19. Additionally, there was significant interest in research areas such as the gut microbiome and its association with diseases, the impact of climate change on agricultural species, studies on multi-drug resistance, and the application of molecular biology techniques for the detection of pathogenic species.

Congratulations to all authors who contributed to these highly valuable research papers!

*Data obtained from SN Insights, which is based on Digital Science's Dimensions.

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Microbiology
Life Sciences > Biological Sciences > Microbiology
COVID19
Life Sciences > Health Sciences > Biomedical Research > Medical Microbiology > Infectious Diseases > COVID19
Vaccines
Life Sciences > Biological Sciences > Biotechnology > Applied Immunology > Vaccines

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